Error-Free Linear Attention is a Free Lunch: Exact Solution from Continuous-Time Dynamics episode artwork

EPISODE · Dec 17, 2025 · 22 MIN

Error-Free Linear Attention is a Free Lunch: Exact Solution from Continuous-Time Dynamics

from Daily Paper Cast · host Jingwen Liang, Gengyu Wang

🤗 Upvotes: 34 | cs.LG Authors: Jingdi Lei, Di Zhang, Soujanya Poria Title: Error-Free Linear Attention is a Free Lunch: Exact Solution from Continuous-Time Dynamics Arxiv: http://arxiv.org/abs/2512.12602v1 Abstract: Linear-time attention and State Space Models (SSMs) promise to solve the quadratic cost bottleneck in long-context language models employing softmax attention. We introduce Error-Free Linear Attention (EFLA), a numerically stable, fully parallelism and generalized formulation of the delta rule. Specifically, we formulate the online learning update as a continuous-time dynamical system and prove that its exact solution is not only attainable but also computable in linear time with full parallelism. By leveraging the rank-1 structure of the dynamics matrix, we directly derive the exact closed-form solution effectively corresponding to the infinite-order Runge-Kutta method. This attention mechanism is theoretically free from error accumulation, perfectly capturing the continuous dynamics while preserving the linear-time complexity. Through an extensive suite of experiments, we show that EFLA enables robust performance in noisy environments, achieving lower language modeling perplexity and superior downstream benchmark performance than DeltaNet without introducing additional parameters. Our work provides a new theoretical foundation for building high-fidelity, scalable linear-time attention models.

Episode metadata supplied by the publisher feed · Published Dec 17, 2025

🤗 Upvotes: 34 | cs.LG Authors: Jingdi Lei, Di Zhang, Soujanya Poria Title: Error-Free Linear Attention is a Free Lunch: Exact Solution from Continuous-Time Dynamics Arxiv: http://arxiv.org/abs/2512.12602v1 Abstract: Linear-time attention and State Space Models (SSMs) promise to solve the quadratic cost bottleneck in long-context language models employing softmax attention. We introduce Error-Free Linear Attention (EFLA), a numerically stable, fully parallelism and generalized formulation of the delta rule. Specifically, we formulate the online learning update as a continuous-time dynamical system and prove that its exact solution is not only attainable but also computable in linear time with full parallelism. By leveraging the rank-1 structure of the dynamics matrix, we directly derive the exact closed-form solution effectively corresponding to the infinite-order Runge-Kutta method. This attention mechanism is theoretically free from error accumulation, perfectly capturing the continuous dynamics while preserving the linear-time complexity. Through an extensive suite of experiments, we show that EFLA enables robust performance in noisy environments, achieving lower language modeling perplexity and superior downstream benchmark performance than DeltaNet without introducing additional parameters. Our work provides a new theoretical foundation for building high-fidelity, scalable linear-time attention models.

PodParley-generated summary based on available episode metadata and transcript content.

NOW PLAYING

Error-Free Linear Attention is a Free Lunch: Exact Solution from Continuous-Time Dynamics

0:00 22:42

No transcript for this episode yet

We transcribe on demand. Request one and we'll notify you when it's ready — usually under 10 minutes.

No similar episodes found.

Frequently Asked Questions

How long is this episode of Daily Paper Cast?

This episode is 22 minutes long.

When was this Daily Paper Cast episode published?

This episode was published on December 17, 2025.

What is this episode about?

🤗 Upvotes: 34 | cs.LG Authors: Jingdi Lei, Di Zhang, Soujanya Poria Title: Error-Free Linear Attention is a Free Lunch: Exact Solution from Continuous-Time Dynamics Arxiv: ...

Can I download this Daily Paper Cast episode?

Yes, you can download this episode by clicking the download button on the episode player, or subscribe to the podcast in your preferred podcast app for automatic downloads.
URL copied to clipboard!